Adam R.
Vaughan
a,
James D.
Lee
*b,
Pawel K.
Misztal
c,
Stefan
Metzger
de,
Marvin D.
Shaw
b,
Alastair C.
Lewis
b,
Ruth M.
Purvis
b,
David C.
Carslaw
bf,
Allen H.
Goldstein
c,
C. Nicholas
Hewitt
g,
Brian
Davison
g,
Sean D.
Beevers
h and
Thomas G.
Karl
i
aDepartment of Chemistry, University of York, York, UK
bNational Centre for Atmospheric Science, University of York, York, UK. E-mail: james.lee@york.ac.uk
cUniversity of California, Berkeley, USA
dNational Ecological Observatory Network, Boulder, USA
eUniversity of Colorado, Boulder, USA
fRicardo Energy and Environment, Fermi Avenue, Harwell, Oxon, OX11 0QR, UK
gLancaster Environment Centre, Lancaster University, Lancaster, UK
hDepartment of Analytical and Environmental Sciences, King's College London, UK
iInstitute of Atmospheric and Cryospheric Sciences, University of Innsbruck, Innsbruck, Austria
First published on 30th November 2015
To date, direct validation of city-wide emissions inventories for air pollutants has been difficult or impossible. However, recent technological innovations now allow direct measurement of pollutant fluxes from cities, for comparison with emissions inventories, which are themselves commonly used for prediction of current and future air quality and to help guide abatement strategies. Fluxes of NOx were measured using the eddy-covariance technique from an aircraft flying at low altitude over London. The highest fluxes were observed over central London, with lower fluxes measured in suburban areas. A footprint model was used to estimate the spatial area from which the measured emissions occurred. This allowed comparison of the flux measurements to the UK's National Atmospheric Emissions Inventory (NAEI) for NOx, with scaling factors used to account for the actual time of day, day of week and month of year of the measurement. The comparison suggests significant underestimation of NOx emissions in London by the NAEI, mainly due to its under-representation of real world road traffic emissions. A comparison was also carried out with an enhanced version of the inventory using real world driving emission factors and road measurement data taken from the London Atmospheric Emissions Inventory (LAEI). The measurement to inventory agreement was substantially improved using the enhanced version, showing the importance of fully accounting for road traffic, which is the dominant NOx emission source in London. In central London there was still an underestimation by the inventory of 30–40% compared with flux measurements, suggesting significant improvements are still required in the NOx emissions inventory.
Concentrations of carbon monoxide (CO) and hydrocarbons in urban centres in the UK have decreased by around an order of magnitude over the past 20 years, providing clear evidence of the effectiveness of both the legislative framework and the emission control technologies employed for these pollutants. However, whilst trends in ambient concentrations of NOx and NO2 in the UK generally showed a decrease in concentration from 1996 to 2002, this has been followed by a period of more stable concentrations from 2004 to 2014. This is not in line with the expected decrease suggested by the UK emission inventories (Fig. 1).6
It is known that ambient NO2 does not respond linearly to reductions in the concentration of NOx, in part due to changes in diesel emission control technology leading to increases in directly emitted NO2,7 and partly due to the complexities of atmospheric chemistry. This may partially explain why ambient concentrations of NOx have not declined as rapidly as expected. Although it has been known for some time that on-road emissions of NOx from diesel passenger cars are often higher than those measured during test cycles,8 it has very recently emerged that this may be due to deliberate action by some manufacturers. The issues surrounding NOx emission from diesel vehicles are exacerbated in Europe by the high proportion of diesel engine vehicles in the passenger car fleet.9 Hence, not surprisingly, there remain considerable difficulties in reconciling predictions of changes in NOx concentrations arrived at using emission inventories with actual measurements of ambient concentrations.
Air pollutant emission inventories provide input data for air pollution models, which in turn are used for predicting current and future air pollution and in developing strategies for improving air quality. One approach uses the so called ‘bottom up’ approach involving estimating emissions from different individual sources (e.g. emissions from a particular type of vehicle per km driven) and activity factors (e.g. number of vehicle km driven on a particular road) to produce annual emission estimates.10 Therefore errors in the emissions from a large source sector (such as passenger cars) can lead to significant inaccuracies in the inventories, which then further propagate into forecasts of air pollutant levels. Evaluation of emission inventories can be carried out by comparing air quality model predictions (using inputs from the inventory) to observed concentrations. However this method does not provide a direct comparison with the emission rate as it requires knowledge of other parameters such as chemistry and meteorology, as well as the inherent uncertainty in the models themselves. In contrast, the eddy-covariance technique provides a direct measurement of an atmospheric pollutant flux from a particular ‘footprint’, providing a ‘top down’ approach for quantifying emissions.11
A recent study from a tall tower site in central London12 directly compared the measured NOx emission rate with estimates from UK emissions inventories.10,13 The study found observed emissions of NOx were on average 80% higher than standard inventory estimates for central London, suggesting the inventory was poorest at estimating NOx where traffic is the dominant source. Agreement was found to be better when an inventory with more explicit treatment of traffic emissions was used, so showing the importance of correctly accounting for the traffic source in London. While this tower-based study well represents the vicinity of the measurement location, it cannot reveal spatial patterning across Greater London.
In the present work, we report measurements of NOx fluxes taken from a low flying aircraft over London. Full details of the flight tracks, as well as measurement concentrations of NOx and volatile organic carbons (VOCs) from the aircraft (including a comparison to various ground based measurements in London) can be found in Shaw et al. (2015).14 Here, we will concentrate exclusively on the flux measurements. Spatially resolved data are compared to emissions inventories, providing a measure of how well the inventories reproduce measured emissions over a wide area of central and suburban London.
Measurement of NOx (NO and NO2) mixing ratios were made using a chemiluminescence instrument designed for 10 Hz measurements, via dual channel design to allow concurrent measurement of NO and NO2.15 The instrument quantifies NO via chemiluminescence upon its reaction with excess O3, and NO2indirectly using a photolytic converter to convert NO2 to NO at 395 nm, followed by detection by chemiluminescence.16 A more detailed description of the running, calibration and design of the instrument can be found in Shaw et al. (2015).14 Mixing ratios used in this study are reported with respect to dry air + water vapour, due to constant stable humidification of the O3 reactant used in the instrument. An accurate humidity value within the sample volume was not obtained. Humidification of the reaction O3 is conducted to remove any changes in background signal caused by rapid water vapour changes in the ambient sample during the flights. Due to this the reported wet mixing ratios are lower compared to dry mixing ratios, and a potential underestimation of the NOx flux was calculated to not exceed 4%.
During all flights, an Aircraft-Integrated Meteorological Measurement System (AIMMS 20) turbulence probe (Aventech Research Inc.) mounted underwing was used to obtain micrometeorological measurements at a 20 Hz acquisition rate.17 The probe was calibrated for static and dynamic upwash.
(1) |
(2) |
Wavelets are localised both in the frequency domain as for Fast Fourier Transform (FFT) but also in the time domain.22 This allows for a signal's properties to be explored in both domains. Another added strength of the method is the ability to tailor the wavelet's properties to suit the application. In this study we used the complex Morlet wavelet as expressed in eqn (3).18
ψ0(η) = π−1/4eiω0ηe−η2/2 | (3) |
The lag time between the two data sets was found to be in the range of 4–7 s. Due to the observed non-stationarity of the lag difference, each flight leg was analysed separately ensuring no additional bias. Before we calculated fluxes via CWT, de-spiking of the data was conducted. The CWT calculates the global cross-spectrum between analyte concentration and vertical wind speed. Fig. 2(b) depicts an example of the global cross-spectrum for a flight leg of NO2 concentration data, with the y-axis giving the eddy contributions integrated over all frequency periods in seconds and the x-axis being the distance travelled along the flight leg. For each individual flight leg, we compared the co- and cumulative spectra across all frequencies for both the CWT and a standard Fast Fourier Transform (FFT). For all the flight legs, the majority of the flux contributions were found to be below 0.1 Hz. This inferred that high frequency spectra correction was not needed, with its contribution to the calculated flux being low. As a final data quality tool, we pad the edges of the wavelet with zeros to help remove any associated edge effects. After this padding is done we apply the cone of influence (COI). The COI is defined as the area outside of which edge effects in the wavelet cross-spectrum give rise to data of a lower quality than the rest.18 For this reason we only consider data within the COI, and remove all other data. Due to the reactive chemistry between NO and NO2 in the presence of O3,26 we calculated NOx flux via separate flux calculations for NO and NO2, with the combination of the two yielding total NOx flux.
(4) |
(5) |
We parametrise the model using friction velocity, measurement height, standard deviation of the vertical wind and roughness length. Turbulence statistics for the footprint model are calculated at 1 km intervals from the wavelet cross-scalogram, with movement in both the x and y direction being 1 km for each new footprint. We use the Drew et al. (2013) study data to estimate expected roughness lengths for the London area.33 For suburban area roughness lengths, values generally range from 0.4–0.6 m but up to 2.0 m for central London. The model evaluates the maximum influence distances in all directions, with the measurement point at its centre. From this it is possible to create a weighing matrix at the same temporal resolution as the inventories being quantified. The matrix when summed up gives a value of 1. This weighting matrix predicts, for every overflown 1000 m cell, the ground influence contributing to the observed emission flux. The matrix is set to the same coordinate system as the inventory. A separate weighting matrix is calculated for every measurement point along the flight track to allow for independent comparison.
For each point along the flight track, the emission inventory value for every cell within the footprint matrix is weighted accordingly and summed up to give a single emission estimate. All estimates from all source sectors are summed to give a total emission estimate every 1 km. Fig. 3 depicts an example of the area for which we can consider our measurements to be spatially representative. The footprint area ranges in distance from the flight track anywhere from 5 to 12 km into the prevailing westerly wind direction. Part of the footprint area includes part of the London Low Emissions Zone (LEZ) which was introduced in 2008 to help improve air quality in central London.
Flight number | Number of flight legs | Day of week | Time of day | Flight altitude/m | Wind direction/deg | Air temperature/°C |
---|---|---|---|---|---|---|
5 | 9 | Wed | Morning | 365–380 | 250–280° | 14.0–16.0 |
7 | 7 | Thurs | Afternoon | 340–380 | 220–260° | 19.0–21.0 |
12 | 7 | Tues | Afternoon | 340–360 | 30–70° | 22.0–23.5 |
To allow for real time comparison between our airborne flux measurements and the inventory estimates for the relevant flux footprint, each inventory source sector is assessed individually using the described footprint method in Section 2.5, giving an emission contribution. The emission inventories used here only provide annual emission estimates for each grid square from the wide range of source sectors – they do not directly provide temporally-resolved hour of the day or day of the year estimates. Therefore, we scale each source sector separately, using scaling factors35 that take into account the temporal variation in emissions for any given month, day and hour. By scaling each source sector individually, we generate more realistic emission estimates for the specific time of day and day of the year of our flux measurements. Scaled estimates for each source sector are then summed up at each point along the flight track, to give 1 km resolution estimates for NOx emission. Nevertheless, such temporal profiles represent the typical average profiles expected for different emission sources. Uncertainty will be introduced when comparing estimates obtained over short periods of time with the mean profiles used in atmospheric emission inventories.
Fig. 5 depicts the 1 km spatially resolved NOx flux observations averaged for all three flights in blue and the NAEI emission estimates plotted in red for all flight legs, all against latitude of the sample position along the flight track. For all of the flights there is relatively good agreement between the NAEI estimates and the measurements in suburban outer London, but, there appears to be a significant underestimation in the inventory compared with the measurements, by a factor of 2–4, in central London (latitude 51.43–51.52). The data interpretation is complicated by the significant uncertainty (60–250%) in our 1 km spatially-resolved flux measurements. Therefore in order to further reduce these uncertainties, each flight track is divided into four parts, each approximately 11 km in length. The first two segments represent outer regions of SW London (zones 1 and 2) and the second set (zones 3 and 4) for central and NE London. The flux data are then averaged for each segment to give a single NOx emission flux. The uncertainty associated for these fluxes is greatly reduced compared to the more spatially resolved flux data, as shown in Fig. 5, now being in the range 30–45%.
Fig. 6 depicts the average ratios of the measured to emission inventory-estimated fluxes from all the flight legs. The error bars denote the standard error of the 17 legs. Zones 1 and 2 in outer London show ratios of around 1.5, with the ratio increasing to over 2 for zones 3 and 4. These discrepancies are similar in magnitude to those reported from measurements made by Lee et al. (2015)12 from 180 m above ground level on the BT Tower in central London.
It is clear that the NAEI is unable to accurately represent emissions of NOx from London, with particularly large discrepancies in the central London area. One possible explanation for this is in the way in which the inventory accounts for road transport emissions. Fig. 6 shows that across the whole of the area surveyed by our flights, road transport is the dominant source of NOx. Traffic contributes up to 90% of NOx emissions in outer London (zones 1 and 2), strongly suggesting that significant error in the road traffic source in the inventory is responsible for the underestimation of NOx emissions by the inventory relative to our flux observations. In central and NE London (zones 3 and 4), where the underestimation of the inventory is highest, road transport, while still the largest source, is responsible for 65–70% of the total NOx emissions in the inventory, with most of the remainder due to domestic and commercial combustion of gas for space and water heating. The relatively low use of gas for heating during July is taken account of via the emission scaling factors applied to the NAEI, but the large underestimation in the inventory in the central London area suggests that as well as underestimation of traffic-derived NOx, there is also some error in the NAEI treatment of domestic and commercial combustion, or there is a major missing source of NOx in the inventory.
The results described above are potentially important as the NAEI is used to provide emissions for air quality forecasting models, which inform potential future air quality abatement strategies. The following sections will discuss potential reasons for the discrepancy, including measurement errors and investigate the advantages of using a more London-specific emissions inventory with a more explicit treatment of the road traffic source.
Some NOx emitted at the ground surface may be lost before it is detected at the flight altitude, causing an error in our flux estimates. Using measured meteorological parameters and the wavelet transform, we calculate Deardorff velocities (w*) for each flight. w* gives a turn-over time for all the influencing eddies which account for the measured flux. We found w* to be in the range of 0.5–3.0 m s−1, which gives a vertical ascent time of 2–8 minutes from the surface to the measurement altitude of 300 m.
Loss of emitted substances can occur via three mechanisms: chemical reaction, weakening vertical transport and storage. To account for chemical losses in the atmosphere, we use the vertical flux profiles obtained in the Karl et al. (2013) study.24 They were able to calculate the loss of isoprene emission during transport through the boundary layer. To use this method for NOx, we substitute NOx chemistry into the model in place of isoprene chemistry, so taking into account the lifetime of NOx in the troposphere with respect to chemical reaction of NOx with the hydroxyl radical (OH). We use the middle-of-the-day OH abundances measured in London during summer 2012, as reported in the Lee et al. (2015) study,38 of 2.0 × 106 molecule per cm3. This gives a lifetime of NOx above London of ∼11 hours. Using this calculated NOx lifetime, we estimate that the loss of NOx flux between the ground surface and the flight altitude is only between 1 and 2%. We have not considered other chemical NOx loss processes (e.g. PAN formation) as we believe these will be small compared to the reaction of NO2 with OH. Loss due to weakening vertical transport accounts for the loss due to vertical momentum decreasing as altitude increases and is estimated to be 25–30%. The final loss process involves storage of some of the emission within the urban structure, such as street canyons.39,40 However we do not consider this to be an important loss process here. Significant storage of NOx within the street canyon in London would result in a steady build up of concentrations, something that is not typically observed. Thus, if deposition processes are ignored, the transfer of NOx out of the street canyon is essentially equal to the emissions, with the only result being a potential time lag from emission to measurement. Future work in this area could gain from using the Lenschow et al. (2015) study to account for all three loss terms in unison.41 All of these loss processes have the potential to increase our measured fluxes, which would further increase the discrepancy between measured and inventory-estimated emissions.
As discussed above, our study shows that, even in outer London where traffic sources are estimated to contribute 90% of the emitted NOx, there is observed inventory under-estimation by a factor of around 150%, adding further evidence that it is the traffic source sector that contains the major error. There are several sources of disagreement between the flux emission estimates and those from the emission inventories. The emission inventories focus on longer term (annual) emission totals rather than providing estimates by hour of the year. For this reason the emissions for a particular hour of the year need to be estimated through the scaling factors described in the previous section. It is however difficult to quantify the additional uncertainties introduced when scaling factors are used in emission inventories in this way.
The LAEI uses a ‘bottom up’ road traffic inventory taking vehicle flow and speed on each road and combining these with national and London-specific vehicle stock data (including buses and taxis) to calculate emissions for each of the 11 vehicle types and combining these to create emissions at 1 km2 resolution. The ‘enhanced LAEI’ results used here benefited from roadside emissions measurements, obtained using the University of Denver Fuel Efficiency Automobile Test (FEAT) system (IR/UV absorption spectroscopy), deployed for a 6 week campaign and taking measurements from 70000 vehicles, including cars, buses and taxis, at four locations across London.42 Vehicle number plates were recorded for each vehicle and these were cross-referenced against vehicle databases to obtain relevant vehicle details including their Euro emissions classification. The roadside emissions measurements quantified exhaust emissions of both total NOx and NO2 as a ratio to carbon dioxide (CO2), with the results then combined with CO2 estimates from the LAEI to create NOx and NO2 emissions in g km−1. The emissions from vehicle types that were not measured during the campaign, most notably articulated heavy goods vehicles, were taken from the published LAEI results.13
In order to try to produce an improved agreement between the inventory measured emissions, we have produced an ‘enhanced’ version of the NAEI. We use all sources from the NAEI except its road emission source to form the base of the inventory. For the road emission source we use the enhanced LAEI road emission estimates scaled using the described roadside emissions measurements data, which increases the road traffic source of NOx in the inventory by an average of ∼50% across London. We also use a revised version of the LAEI's non-road mobile machinery (NRMM) source, which gives an improved estimate to that in the NAEI.
Comparing the enhanced NAEI with our measurements allows us to better assess the effect of using a more explicit treatment of traffic emissions in the national inventory. The same methodologies, as used for NAEI comparison, were used in analysis of the enhanced NAEI. Each enhanced NAEI source sector was analysed to give emission estimates along the flight track at 1 km resolution. Each sector was scaled individually to allow for time of day comparison using the scaling factors described earlier, then added together to give overall NOx emission estimates.
Fig. 7 shows how enhanced NAEI emission estimates in red (standard error as light red shading) compare with the measured NOx fluxes in blue (standard error as light blue shading) for each flight average. It is apparent that the agreement between the measurement and the inventory is better than for the standard NAEI. Outer regions of London seem to compare very well, with all flight legs showing only a small degree of discrepancy. However, despite the agreement being improved and almost always falling within the error of the 1 km spatially resolved flux measurement, there is still a significant discrepancy observed in central London. As with the standard NAEI data, the flight track was also divided into four parts, each approximately 11 km in length, with the flux data then averaged for each segment to give a single NOx emission flux with reduced error (again in the range 30–45%). Fig. 8 depicts the average ratio of the measured to enhanced emission inventory flux from all the flight legs, with the error bars denoting the standard error of the 17 legs included, along with the source sector contribution as before. The contribution from the different source sectors is similar for the enhanced NAEI as for the standard inventory. The main difference is the addition of the non-road mobile machinery source, which now contributes up to 9% of total NOx emissions in central London. The ratio of measurement to enhanced emissions inventory for all zones shows considerable improvement compared to the standard NAEI. For the SW outer London zones, the ratio is close to one (average of 1.1), which is within the standard error of the measurements. However, in central and NE London, there is still some significant underestimation (average measurement to inventory ratio of 1.48), which is outside the (30–45%) flux measurement uncertainty. The observed improvements in the enhanced emission inventory estimation of NOx can be directly related to the improved road transport source increasing the magnitude of the road transport emissions and the addition of the NMRR as a key source not currently accounted for in the standard NAEI.
We also compare our measurements to an enhanced version of the NAEI, containing both non-road mobile machinery emission sources from the LAEI and real world traffic emissions from the enhanced LAEI, which provides a much better treatment of NOx coming from these sources. The comparison yielded better agreement between the two, especially in outer London, where the measured to inventory ratio was found to be around 1.1. In central London however there is still an average underestimation of around a factor of 1.5 compared to the measurements.
The current work has provided important information on the spatial variation in NOx emissions over a large and complex urban environment. There are several areas where further research would be beneficial. First, the inhomogeneous terrain in London presents a challenge for flux measurements, both in terms of the inhomogeneous nature of the roughness and distributions of emissions (horizontally and vertically). Further measurements over different city areas would help better understand these effects. For example, measurements over a city such as Paris that has fewer high-rise buildings than London would provide a useful contrast. Second, the measurement of the fluxes of other species such as CO and CO2 would help provide more comprehensive analysis of the NOx flux emission estimates. More work is also required on understanding and quantifying the short-term accuracy of emission inventories. Emission inventories tend to focus on providing longer term (annual) emission estimates and are less able to provide information on the temporal nature of emissions. Improved information on the temporal characteristics of emissions would improve the reliability of short-term flux measurements when compared with emission inventories. In particular, our measurements highlight the critical importance of obtaining independent measurements of pollutant emission rates from vehicles during on-road driving conditions and using these data in emission inventories, rather than relying on emissions data obtained during artificial test driving conditions or provided by vehicle manufacturers.
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